[1]孙本旺,田 芳.基于深度学习算法的藏文微博情感计算研究[J].计算机技术与发展,2019,29(10):55-58.[doi:10. 3969 / j. issn. 1673-629X. 2019. 10. 012]
 SUN Ben-wang,TIAN Fang.Research on Tibetan Micro-blog Affective Computation Based on Deep Learning Algorithm[J].,2019,29(10):55-58.[doi:10. 3969 / j. issn. 1673-629X. 2019. 10. 012]
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基于深度学习算法的藏文微博情感计算研究()
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《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
29
期数:
2019年10期
页码:
55-58
栏目:
应用开发研究
出版日期:
2019-10-10

文章信息/Info

Title:
Research on Tibetan Micro-blog Affective Computation Based on Deep Learning Algorithm
文章编号:
1673-629X(2019)10-0055-04
作者:
孙本旺1 田 芳2
1. 青海大学 计算机技术与应用系,青海 西宁 810016; 2. 青海大学 信息化技术中心,青海 西宁 810016
Author(s):
SUN Ben-wang 1 TIAN Fang 2
1. Department of Computer Technology and Applications,Qinghai University,Xining 810016,China;2. Information Technology Center,Qinghai University,Xining 810016,China
关键词:
深度学习藏文微博词向量情感计算
Keywords:
deep learningTibetan micro-blogword vectoremotional calculation
分类号:
TP391.1
DOI:
10. 3969 / j. issn. 1673-629X. 2019. 10. 012
摘要:
针对藏文文本情感计算研究,将 CNN-LSTM 深度学习模型引入到藏文微博情感计算,弥补了少数语言自然语言处理研究的缺乏,对藏文研究具有一定的推动作用。 针对藏文语料的不公开,通过藏文同反义情感词典对标注好的藏文微博语料中情感词汇的同反义词进行替换,进一步扩充了藏文微博语料,以适合深度学习对大数据语料的要求。 藏文微博分词后,利用 Word2vec 工具训练出藏文微博词向量模型,提高特征向量对文本深层次语义信息的表达;然后,将训练好的词向量和对应的情感倾向标签直接引到由卷积层、池化层、LSTM 层、全连接层等构成的 CNN-LSTM 模型,在每一层的输出做归一化处理;最后经过 Softmax 分类器对藏文微博进行情感倾向分类,并与 LSTM 以及传统的情感词典做了实验对比。 结果表明,该算法获得了较好的分类效果。
Abstract:
Aiming at the study of Tibetan text emotion calculation,the CNN-LSTM deep learning model is introduced into Tibetan micro-blog emotion calculation,which makes up for the lack of research on minority language natural language processing,and has certain impetus to Tibetan studies. For the non-disclosure of Tibetan corpus,the Tibetan and the anti-sense sentiment dictionary are used to replace the antonyms of the emotional vocabulary in the Tibetan micro-blog corpus,further expanding the Tibetan micro-blog corpus to meet the requirements of deep learning to big data. After the Tibetan micro-blog’ word segmentation,the Word2vec tool is used to train the Tibetan micro-blog’ word vector model to improve the expression of the deep vector semantic information of the feature vector. Then,the trained word vector and the orresponding emotional tendency label are directly introduced into the CNN-LSTM model consisting of convolutional layer,pooling layer,flatten layer,LSTM layer,and the output at each layer will be batch normalization.Finally,the Softmax Classifier is used to affect the Tibetan micro-blog. Compared with LSTM and traditional sentiment lexicon,it shows that the proposed algorithm achieves better classification effect.

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更新日期/Last Update: 2019-10-10